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A Study on a Marine Reservoir and a Fluvial Reservoir History Matching Based on Ensemble Kalman Filter

机译:基于合奏卡尔曼滤波器的海洋水库和河流储层历史匹配研究

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In reservoir management, utilizing all the observed data to update the reservoir models is the key to make accurate forecast on the parameters changing and future production. Ensemble Kalman Filter (EnKF) provides a practical way to continuously update the petroleum reservoir models, but its application reliability in different reservoirs types and the proper design of the ensemble size are still remain unknown. In this paper, we mathematically demonstrated Ensemble Kalman Filter method; discussed its advantages over standard Kalman Filter and Extended Kalman Filter (EKF) in reservoir history matching, and the limitations of EnKF. We also carried out two numerical experiments on a marine reservoir and a fluvial reservoir by EnKF history matching method to update the static geological models by fitting bottom-hole pressure and well water cut, and found the optimal way of designing the ensemble size. A comparison of those the two numerical experiments is also presented. Lastly, we suggested some adjustments of the EnKF for its application in fluvial reservoirs.
机译:在水库管理中,利用所有观察到的数据更新储层模型是对参数变化和未来生产的准确预测的关键。 Ensemble Kalman筛选器(ENKF)提供了一种不断更新石油储层模型的实用方法,但其不同的储层类型的应用可靠性以及集合尺寸的正确设计仍然未知。在本文中,我们在数学上展示了集合式卡尔曼滤波方法;讨论其在储存历史匹配中的标准卡尔曼滤波器和扩展卡尔曼滤波器(EKF)的优势,以及ENKF的局限性。我们还通过ENKF历史匹配方法对海洋储层和河流储层进行了两个数值实验,以通过装配底孔压力和水切割来更新静态地质模型,并发现设计集合尺寸的最佳方式。还介绍了那些两种数值实验的比较。最后,我们建议在河流水库中的应用进行一些调整。

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